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Optimization of milling parameters using artificial neural network and artificial immune system

机译:使用人工神经网络和人工免疫系统优化铣削参数

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摘要

The present paper is an attempt to predict the effective milling parameters on the final surface roughness of the work-piece made of Ti-6Al-4V using a multi-perceptron artificial neural network. The required data were collected during the experiments conducted on the mentioned material. These parameters include cutting speed, feed per tooth and depth of cut. A relatively newly discovered optimization algorithm entitled, artificial immune system is used to find the best cutting conditions resulting in minimum surface roughness. Finally, the process of validation of the optimum condition is presented.
机译:本文尝试使用多感知器人工神经网络预测由Ti-6Al-4V制成的工件的最终表面粗糙度的有效铣削参数。在对上述材料进行的实验过程中收集了所需的数据。这些参数包括切削速度,每齿进给量和切削深度。使用一种相对较新发现的名为“人工免疫系统”的优化算法来找到最佳的切削条件,从而使表面粗糙度最小。最后,提出了最佳条件的验证过程。

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